# -*- coding: utf-8 -*-

#    Copyright (C) 2012 Yahoo! Inc. All Rights Reserved.
#
#    Licensed under the Apache License, Version 2.0 (the "License"); you may
#    not use this file except in compliance with the License. You may obtain
#    a copy of the License at
#
#         http://www.apache.org/licenses/LICENSE-2.0
#
#    Unless required by applicable law or agreed to in writing, software
#    distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
#    WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
#    License for the specific language governing permissions and limitations
#    under the License.

import collections
import os

import networkx as nx
import six


def _common_format(g, edge_notation):
    lines = []
    lines.append("Name: %s" % g.name)
    lines.append("Type: %s" % type(g).__name__)
    lines.append("Frozen: %s" % nx.is_frozen(g))
    lines.append("Density: %0.3f" % nx.density(g))
    lines.append("Nodes: %s" % g.number_of_nodes())
    for n, n_data in g.nodes_iter(data=True):
        if n_data:
            lines.append("  - %s (%s)" % (n, n_data))
        else:
            lines.append("  - %s" % n)
    lines.append("Edges: %s" % g.number_of_edges())
    for (u, v, e_data) in g.edges_iter(data=True):
        if e_data:
            lines.append("  %s %s %s (%s)" % (u, edge_notation, v, e_data))
        else:
            lines.append("  %s %s %s" % (u, edge_notation, v))
    return lines


class Graph(nx.Graph):
    """A graph subclass with useful utility functions."""

    def __init__(self, data=None, name=''):
        super(Graph, self).__init__(name=name, data=data)
        self.frozen = False

    def freeze(self):
        """Freezes the graph so that no more mutations can occur."""
        if not self.frozen:
            nx.freeze(self)
        return self

    def export_to_dot(self):
        """Exports the graph to a dot format (requires pydot library)."""
        return nx_pydot.to_pydot(self).to_string()

    def pformat(self):
        """Pretty formats your graph into a string."""
        return os.linesep.join(_common_format(self, "<->"))


class DiGraph(nx.DiGraph):
    """A directed graph subclass with useful utility functions."""

    def __init__(self, data=None, name=''):
        super(DiGraph, self).__init__(name=name, data=data)
        self.frozen = False

    def freeze(self):
        """Freezes the graph so that no more mutations can occur."""
        if not self.frozen:
            nx.freeze(self)
        return self

    def get_edge_data(self, u, v, default=None):
        """Returns a *copy* of the edge attribute dictionary between (u, v).

        NOTE(harlowja): this differs from the networkx get_edge_data() as that
        function does not return a copy (but returns a reference to the actual
        edge data).
        """
        try:
            return dict(self.adj[u][v])
        except KeyError:
            return default

    def topological_sort(self):
        """Return a list of nodes in this graph in topological sort order."""
        return nx.topological_sort(self)

    def pformat(self):
        """Pretty formats your graph into a string.

        This pretty formatted string representation includes many useful
        details about your graph, including; name, type, frozeness, node count,
        nodes, edge count, edges, graph density and graph cycles (if any).
        """
        lines = _common_format(self, "->")
        cycles = list(nx.cycles.recursive_simple_cycles(self))
        lines.append("Cycles: %s" % len(cycles))
        for cycle in cycles:
            buf = six.StringIO()
            buf.write("%s" % (cycle[0]))
            for i in range(1, len(cycle)):
                buf.write(" --> %s" % (cycle[i]))
            buf.write(" --> %s" % (cycle[0]))
            lines.append("  %s" % buf.getvalue())
        return os.linesep.join(lines)

    def export_to_dot(self):
        """Exports the graph to a dot format (requires pydot library)."""
        return nx_pydot.to_pydot(self).to_string()

    def is_directed_acyclic(self):
        """Returns if this graph is a DAG or not."""
        return nx.is_directed_acyclic_graph(self)

    def no_successors_iter(self):
        """Returns an iterator for all nodes with no successors."""
        for n in self.nodes_iter():
            if not len(self.successors(n)):
                yield n

    def no_predecessors_iter(self):
        """Returns an iterator for all nodes with no predecessors."""
        for n in self.nodes_iter():
            if not len(self.predecessors(n)):
                yield n

    def bfs_predecessors_iter(self, n):
        """Iterates breadth first over *all* predecessors of a given node.

        This will go through the nodes predecessors, then the predecessor nodes
        predecessors and so on until no more predecessors are found.

        NOTE(harlowja): predecessor cycles (if they exist) will not be iterated
        over more than once (this prevents infinite iteration).
        """
        visited = set([n])
        queue = collections.deque(self.predecessors_iter(n))
        while queue:
            pred = queue.popleft()
            if pred not in visited:
                yield pred
                visited.add(pred)
                for pred_pred in self.predecessors_iter(pred):
                    if pred_pred not in visited:
                        queue.append(pred_pred)


class OrderedDiGraph(DiGraph):
    """A directed graph subclass with useful utility functions.

    This derivative retains node, edge, insertion and iteration
    ordering (so that the iteration order matches the insertion
    order).
    """
    node_dict_factory = collections.OrderedDict
    adjlist_dict_factory = collections.OrderedDict
    edge_attr_dict_factory = collections.OrderedDict


class OrderedGraph(Graph):
    """A graph subclass with useful utility functions.

    This derivative retains node, edge, insertion and iteration
    ordering (so that the iteration order matches the insertion
    order).
    """
    node_dict_factory = collections.OrderedDict
    adjlist_dict_factory = collections.OrderedDict
    edge_attr_dict_factory = collections.OrderedDict


def merge_graphs(graph, *graphs, **kwargs):
    """Merges a bunch of graphs into a new graph.

    If no additional graphs are provided the first graph is
    returned unmodified otherwise the merged graph is returned.
    """
    tmp_graph = graph
    allow_overlaps = kwargs.get('allow_overlaps', False)
    overlap_detector = kwargs.get('overlap_detector')
    if overlap_detector is not None and not six.callable(overlap_detector):
        raise ValueError("Overlap detection callback expected to be callable")
    elif overlap_detector is None:
        overlap_detector = (lambda to_graph, from_graph:
                            len(to_graph.subgraph(from_graph.nodes_iter())))
    for g in graphs:
        # This should ensure that the nodes to be merged do not already exist
        # in the graph that is to be merged into. This could be problematic if
        # there are duplicates.
        if not allow_overlaps:
            # Attempt to induce a subgraph using the to be merged graphs nodes
            # and see if any graph results.
            overlaps = overlap_detector(graph, g)
            if overlaps:
                raise ValueError("Can not merge graph %s into %s since there "
                                 "are %s overlapping nodes (and we do not "
                                 "support merging nodes)" % (g, graph,
                                                             overlaps))
        graph = nx.algorithms.compose(graph, g)
    # Keep the first graphs name.
    if graphs:
        graph.name = tmp_graph.name
    return graph
